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I need to do a scan on HBase table for my adhoc queries. Currently I'm using just a single node. I was wondering if running HBase in distributed mode on more than 1 machine might make it faster. It currently takes around 5 mins to do a scan on 3 million rows on a m1.large EC2 machine. Any ideas on how to make scan faster are welcome. Currently, I have scan.setCaching enabled which has helped a lot

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No, adding nodes will not speed up a scan. HBase scans are serial for a couple of reasons.

When you make a call like this HTable.getScanner(scan) what is returned is an iterator of Result objects -- upon calling up the next() item, HBase is actually performing another Get-like query for the next row using the parameters of your scan. All the Scan object does itself is generate a list of row keys and provide an iterator with which you can move through them (it actually does a bit more regarding caching and figuring out which regions the row keys exist on, but we can neglect that).

Beyond the actual mechanisms of a Scan in HBase, there is the matter of regions as the underlying architecture for physically storing data on the disk. The broadest organizing factor in a region file is the column family. This makes sense, since it allows for less overhead when fetching pieces of data in the same column/family. Since column families typically exist within one region (or a set of regions, as the size of the column family grows), the effect of parallelizing a scan would be minimal unless you were doing a scan over enough rows to warrant reading from multiple regions, which is generally advised against (after a certain point, it becomes useful to use map/reduce operations to gather information on and compute over your data set).

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